虚假评论检测的高效集成方法

Asif Iqbal, Muhammad Arslan Rauf, Muhammad Zubair, Tanveer Younis
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引用次数: 0

摘要

在当今电子商务日益发展的时代,人们更喜欢在网上购买商品和服务,以节省时间。这些网上购物很大程度上受到已经购买过这些商品的人的评论或意见的影响。客户就如何提高产品质量、开发和监控业务策略向企业提供意见,以促进销售和利润。顾客也可以使用这些评论来选择合适的商品,从而节省精力和时间。虚假评论是骗子为了不正当的金钱利益而推销或贬低产品或服务的行为。在这篇研究论文中,我们提出了一个集成机器学习模型来识别评论是欺诈性的还是真实的。为了实现这一目标,使用了amazon reviews数据集。与其他单个分类器相比,所提出的集成模型表现更好。随机森林提供99%的准确率,优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Ensemble approach for Fake Reviews Detection
People prefer to buy items and services online to save time in the current age of growing e-commerce. these internet purchases are heavily impacted by the reviews or opinions of people who have already purchased them. customers provide comments to businesses on how to improve product quality, develop, and monitor business strategies in order to boost sales and profits. customers may also use these comments to choose the proper items with less effort and time spent. giving fake review is the practice of fraudulent people who wants to promote or degrade products or services for illegitimate monetary gain. in this research paper, we present an ensemble machine-learning model to identify whether a review is fraudulent or authentic. to achieve this objective, amazon reviews dataset is used. the proposed ensemble model outperformed as compared to other individual classifiers. random forest provides 99% accuracy which is better than other algorithms.
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